RAJASEKAR B

@sathyabama.ac.in

Sathyabama Institute of Science and Technology

55

Scopus Publications

136

Scholar Citations

5

Scholar h-index

3

Scholar i10-index

Scopus Publications

  • Transformation Optics and Transformation Electromagnetics: Comprehensive Review with Experimental Validation, Performance Analysis and Commercial Viability Assessment
    Khasim K.N.V, Rajasekar B
    Ssrg International Journal of Electronics and Communication Engineering, 2026
    The article presented here gives a detailed overview of Transformation Optics and Transformation Electromagnetics, and highlights the crucial gaps identified through a fine literature review. It includes proper experimental validation data that shows antenna gains of 15.7 to 16.1 dBi, beam steering capabilities up to ±50°, and cloaking performance with Radar Cross Section (RCS) decreasing from -9.4 dB to -9.2 dB. The article also provides quantitative standards, detailed case studies of successful implementations, a thorough analysis of limitations, as well as an economic forecast projecting a $20.9B market by 2035. The article also proposes an organized research roadmap that addresses manufacturing challenges, standardization requirements, and regulatory-related issues. This research work links theoretical concepts with real-world applications that offer the required essential guidance to researchers, engineers, and industry stakeholders in the Electromagnetics area.
  • Energy Harvesting Antennas for Sustainable IoT Solutions
    National Journal of Antennas and Propagation, 2025
    Energy harvesting antennas represent a pivotal technology for enabling sustainable solutions in the Internet of Things (IoT).By harnessing ambient energy sources such as radio frequency (RF) waves, these antennas provide a pathway toward self-sustaining IoT devices with reduced reliance on traditional batteries.Existing IoT systems heavily depend on battery-powered devices, which face challenges such as limited energy capacity, frequent maintenance, and environmental concerns from battery disposal.These issues hinder the scalability and longevity of IoT networks, especially in remote or hard-to-access locations.The proposed framework leverages IoT-based energy harvesting [IoT-EH] using highly efficient antennas that collect RF energy from ambient sources like cellular networks, Wi-Fi signals, and broadcast systems.This harvested energy powers low-energy IoT devices, ensuring uninterrupted operation.The framework integrates energy harvesting antennas with energy management systems to optimize power allocation and usage dynamically.The proposed method facilitates sustainable IoT deployments by eliminating the need for frequent battery replacements and minimizing environmental impact.It is particularly beneficial in applications such as smart agriculture, environmental monitoring, and industrial automation, where continuous device operation and minimal maintenance are critical.The findings demonstrate that the proposed approach significantly extends the device lifecycle, reduces maintenance costs, and enhances system reliability.Moreover, experimental results reveal an efficient conversion of ambient RF energy, ensuring that IoT devices achieve energy autonomy.This method presents a scalable and eco-friendly solution to the growing energy demands of IoT ecosystems.
  • A Comprehensive Analysis of FPGA Based Image Processing Technique in Machine Learning Approaches
    Mattagunja Varaprasad, B. Rajasekar
    2nd International Conference on Intelligent Algorithms for Computational Intelligence Systems Iacis 2025, 2025
    A low-power Very Large-Scale Integration (VLSI) design using a Field-Programmable Gate Array (FPGA) technology enables real-time image processing through highspeed data transfer and the execution of multiple parallel operations on a same clock signal. Integrated nanomaterials are employed to reduce overall power consumption. Carbon Nanotube Field-Effect Transistor (CNTEFT) technology facilitates high-speed operation, while VLSI reduces transistor count and power consumption, making the model suitable for low-power applications. However, increased power consumption and additional chip area can arise due to inefficient circuit design and the integration of low-power VLSI circuits within FPGA technology. This analysis focuses on image processing, edge detection approach and object detection approach, implemented as combinational circuits and analyzed for low-power VLSI using CNTFET and Gate Diffusion Input (GDI) technology. The arithmetic circuit includes a full adderbased dynamic threshold, 6 transistor full adder, signal processing unit, 4-bit unary decoder, and multiplexer implemented in a combinational circuit. Power consumption, latency, power-delay product (PDP), and energy consumption are considered as the performance metrics of the methods.
  • AI-Powered Classification of Bone Marrow Cancer: A Deep Learning Approach for Leukemia and Myeloma Diagnosis
    Sravanthi P, Shaik Jahirunnisa, Adarsh Naik S, K N V Khasim, B Rajasekar
    2025 6th International Conference on Data Intelligence and Cognitive Informatics Icdici 2025, 2025
    The Bone Marrow Cancer Classification system is an Artificial Intelligence powered platform designed to help users to classify the blood cancer reports. This cancer generally originates in the stem cells of the bone marrow. It is primarily classified into Leukemia and Myeloma. Diagnosing these conditions requires morphological examination by trained human examiners, making the process tedious and time-consuming. The project aims to provide an in-depth analysis for the examination of blood cells, with a significant focus on classifying leukemia and myeloma cells in blood smears. The project primarily uses Convolutional Neural Networks employed to classify the blood cell images for that purpose Residual Network (ResNet) and AlexNet architecture are used, the work of the Project involves several key steps, including data Augmentation and Pre-processing, Dataset division, Model training and Ensemble the results of both Architectures to improve the overall accuracy of the model.
  • Serverless Cloud Computing for Scalable E-Commerce Applications Utilizing Load Balancing Algorithms and Docker Swarm
    K. Priya, P. Jyothi, B. Premkumar, Rajasekar, A L. Chidambaram
    2025 International Conference on Networks and Cryptology Netcrypt 2025, 2025
    Remote computing has completely transformed the deployment and management of scalable e-Commerce applications, by providing an optimal solution to address varying traffic conditions economically and efficiently. The present study investigates how serverless computing can be integrated in e-commerce applications with emphasis on load balancing and Docker Swarm. E-commerce applications are used in web sites that have fluctuations in the traffic rates and hence resource management is important so as to ensure the quality is not compromised. Load balancing is still used in the context of serverless computing to empower the dynamic load distribution of the arriving requests to multiple serverless instances with relatively low response times and the efficient usage of resources. Container orchestration service Docker Swarm is utilized to create and manage microservices in a serverless manner with the support of quick scaling and efficient workload balancing. The research assesses the effect of different load balancing techniques, including round-robin or least-connections, in application performance under varying traffic conditions. Furthermore, this paper also discusses how Docker Swarm's automation of the scale-up and scale-down modes and failure recovery keep the environment available and reliable. The current study indicates that serverless, load balancing algorithms and Docker Swarm provide the much-needed boost to the scalability, performance and cost of the e-commerce application making serverless the best solution for online retail market.
  • Hybrid Optical-Electrical Transceiver Architecture for High-Speed Data Communications
    Suryakanta Panda, Nitish Vashisht, Srinivasa Rao K S, Rajasekar. B, Kalyan Acharjya, Nitish Vashisht
    2025 International Conference on Automation and Computation Autocom 2025, 2025
    Evaluating Design Tradeoffs in MMW Wave Arrays for High-Speed Wireless Data Communication and its Optimization over Fiber If you tear open your cloud, you will find a stream of is and Os at the heart of all this, with shrill screams from demanding applications like video, virtual reality, etc. pushing I believe close to their limits bandwidth comments here up purely optical links. We are reporting on highresolution computational imaging optimized for 3D surface reconstruction with tight constraints on operational uncertainty. Traditional electronic-only transceiver architecture is approaching its physical limits regarding data speed and power efficiency spurring the critical demand for more advanced approaches. Novel hybrid optical-electrical transceiver architecture has been discussed to overcome these limitations. It blends the fast speeds and broad bandwidths made possible by optical communication with the flexibility and scale of electrical circuits. The heart of this architecture is an electro-optic interface that converts electrical signals to optical. Enabling this interface is advanced materials like silicon photonics that permit optical and electronic components to be integrated into a single chip. This hybrid architecture combines optical communication for high-speed data transmission and enables data rates that are multiple orders of magnitude faster than traditional electronic-only architectures. Moreover, optical interconnects directly benefit the transceiver by lowering its power consumption, reducing total energy use and improving system performance.
  • Concentric Square Slotted Four-Port MIMO Antenna Using EBG Decoupling Structure for 5G Applications
    B. M. S. Sreenivasa Rao, B. Rajasekar, N. Prasad, B. T. P. Madhav, P. Pardhasaradhi, Sudipta Das
    Signals and Communication Technology, 2025
  • Malware Classification Using Artificial Neural Network
    Charan R K, Chavan Chandu Nayak, K N V Khasim, Ashwini Kodipalli, Ushasree. A, B Rajasekar
    2025 International Conference on Computing Technologies Icoct 2025, 2025
    The rapid increase of malware poses a significant cybersecurity threat, necessitating effective detection and classification techniques. Traditional signature-based methods often fall short due to their inability to recognize novel and evolving malware strains. This paper explores the application of Artificial Neural Networks (ANN) for malware classification, leveraging their capability to learn complex patterns and generalize from training data. We developed and fine-tuned a machine learning algorithm based on neural networks. We utilized a diverse and extensive collection of data, which included samples of both harmful malware and legitimate software applications. The proposed ANN model achieved a high classification accuracy, demonstrating its efficacy in distinguishing between malicious and non-malicious executables. Comparative analysis of different optimizer techniques highlights the superior performance of our ANN based approach. The results suggest that ANNs can significantly enhance malware detection systems, offering a robust solution for cybersecurity defenses. Future work will focus on optimizing the model and expanding the dataset to further improve classification accuracy and adaptability to emerging threats.
  • Optimizing Image-based Vehicle Damage Estimation through Artificial Intelligence
    Anuja Nanda, Rajasekar.B, Vivek Saraswat, Asif Mohamed H B, Naresh Kaushik, Raghu N
    Aistemedu 2025 2025 International Conference on AI Driven Stem Education and Learning Technologies Proceedings, 2025
    Image-based vehicle damage estimation has emerged as a crucial application of artificial intelligence, enabling faster and more reliable assessments compared to manual inspection. It offers significant potential in the insurance and automotive industries by reducing human error and improving decision-making efficiency. However, existing approaches often face challenges such as limited accuracy in detecting subtle damage patterns, high dependency on large labeled datasets, and poor adaptability across diverse vehicle models and environmental conditions. These limitations hinder practical deployment in real-world scenarios. To address these issues, we propose an Image Damage Estimation Framework (IDEF) that integrates Convolutional Neural Networks (CNNs) with Transfer Learning using ResNet architecture for severity classification. This framework enhances feature extraction, reduces training complexity, and improves generalization by leveraging pretrained knowledge from large-scale image datasets. The proposed method can be applied in insurance claim processing, automated vehicle inspection, and fleet management systems, ensuring timely and precise evaluation of damage severity. Experimental findings demonstrate that IDEF significantly improves classification accuracy, reduces computational overhead, and delivers robust performance across varying conditions. This establishes it as a reliable AI-based solution for accurately estimating vehicle damage. The evaluation considered accuracy (93.5%), precision (91.6%), recall (92.7%), and F1-score (92.1%), proving the proposed IDEF framework significantly outperforms existing vehicle damage estimation methods.
  • Optimizing Image-Based Vehicle Damage Estimation Through Artificial Intelligence
    Anuja Nanda, Rajasekar. B, Vivek Saraswat, Asif Mohamed H B, Naresh Kaushik, Raghu N
    2025 International Conference on Metaverse and Current Trends in Computing Icmctc 2025, 2025
    Vehicle damage is any physical injury or degradation that affects the design, functionality, or appearance of a vehicle. Numerous factors, such as accidents, injuries, degradation over time, vandalism, and natural failures, might cause damage. It can struggle with accurately assessing complicated damage types, various lighting conditions, and diverse vehicle models. To address these issues, this study introduces a unique approach, the Adaptive Sea Lion Optimized Intelligent Random Forest (ASLO-IRF)to estimate vehicle damage. The damaged vehicle image dataset was collected in Kaggle, that was pre-processed by histogram equalization. The experiment is done using the Python platform and the results demonstrate that the suggested strategy outperformed the conventional approaches with recall (96.5%), precision (98.3%), and f1-score (95.7%). The integration of AI into vehicle damage estimation is a step in the direction of modernizing the insurance industry, using innovation and fostering the adoption of the latest technology.
  • Developing a Gait-Based Stacked Ensemble Authentication Framework for Internet of Things
    Irshed Hussain, S. Gopinath, Ish Kapila, Rajasekar. B, Hitesh Kalra, Srinivasa Rao K S
    2025 2nd International Conference on Multidisciplinary Research and Innovations in Engineering Mrie 2025, 2025
  • An intelligent weather prediction model using optimized 1D CNN with attention GRU
    Global Nest Journal, 2024
  • Falcon Optimization Algorithm-Based Energy Efficient Communication Protocol for Cluster-Based Vehicular Networks
    Youseef Alotaibi, B. Rajasekar, R. Jayalakshmi, Surendran Rajendran
    Computers Materials and Continua, 2024
  • Exoskeleton Pysiotherapy and Assistive Robotic Arm
    Pradeep Surya Dadi, Geetha Rani K, Sathish Kumar P. J, Rajasekar B, Surendran R
    2nd International Conference on Sustainable Computing and Smart Systems Icscss 2024 Proceedings, 2024
  • Machine Learning in Oncology: SVM-Based Classification of Lung, Breast and Liver Cancer from MRI Scans
    Surendran R, Sundara Rajulu Navaneethakrishnan, Rajasekar B, K S Balamurugan, M. Sudhagar
    Icetas 2024 9th IEEE International Conference on Engineering Technologies and Applied Sciences, 2024
  • Empowering Independence: Raspberry Pi OCR for Visually Impaired User
    Reddy Sushma Sree, Kondoju Vikas, G Sai Bhavani Datta, K N V Khasim, B Rajasekar
    Proceedings of the 3rd International Conference on Applied Artificial Intelligence and Computing Icaaic 2024, 2024
  • Impact of Preprocessing Thermographs on Effective Classification of Potatoes
    N. M. Nandhitha, S. Emalda Roslin, S. Shivasreetha, M. A. Muthiah, B. Rajasekar
    Proceedings 2024 4th International Conference on Soft Computing for Security Applications Icscsa 2024, 2024
  • Design of phase measurement system using Hybrid Dual D-FIFO-FF synchronizer and PWM based duty cycle computation
    S.K. Ganesh Kumar Pedapudi, B. Rajasekar
    Measurement Sensors, 2023
  • An Efficient Allocation of Resources in wireless Communications IoT Network for Numerous Users
    S. Mahaboob Basha, R. Dhanalakshmi, A Gnana Soundari, Venkatramanan C B, B Rajasekar
    Proceedings of the 2023 International Conference on Innovative Computing Intelligent Communication and Smart Electrical Systems Icses 2023, 2023
  • A Success of Bulk Queueing Service of Expected Waiting Time with Regular Service, Repair, Idle and Single Server Vacation in Real-life Data analysis
    G. T. Shakila Devi, K. Geetha Rani, B. Rajasekar, P. J. Sathish Kumar, R. Surendran
    Iet Conference Proceedings, 2023
  • Exploring the Role of Mining Wireless Framework in Identifying Human Privacy Vulnerabilities in Internet of Things Networks
    R. Dhanalakshmi, Venkatramanan C B, B Rajasekar, S. Mahaboob Basha, A. Gnana Soundari
    Proceedings of the International Conference on Intelligent and Innovative Technologies in Computing Electrical and Electronics Iciitcee 2023, 2023
  • Identification of Fatigue Drivers Based on Multiple Convolutional Neural Networks in Accelerometry Data
    Venkatramanan C B, B Rajasekar, S. Mahaboob Basha, A. Gnana Soundari, R. Dhanalakshmi
    Proceedings of the International Conference on Intelligent and Innovative Technologies in Computing Electrical and Electronics Iciitcee 2023, 2023
  • A Modified study on Genetic Algorithm in sensing orientations among the multi-directional Wireless Sensor Networks
    B Rajasekar, R.A Gnana Soundari, S Mahaboob Basha, R. Dhanalakshmi, Venkatramanan C B
    Proceedings of the 2023 International Conference on Innovative Computing Intelligent Communication and Smart Electrical Systems Icses 2023, 2023
  • ANND: Identification and Prediction of Tooth Decay based on Artificial Neural Network and DenseNet Model
    A. Gnana Soundari, R. Dhanalakshmi, Venkatramanan C B, B Rajasekar, S. Mahaboob Basha
    Proceedings of the International Conference on Intelligent and Innovative Technologies in Computing Electrical and Electronics Iciitcee 2023, 2023
  • Novel Real-Time Decision-Based Carrier Tracking for Software-Defined Radios Using M-ARY QAM Modulation
    Nikhil Marriwala, Gnana Kousalya C., B. Rajasekar, N. M. Nandhitha, Ashu Gautam, Aarti Sangwan
    International Journal of Decision Support System Technology, 2023
  • A Single Port Dual-Polarized Microstrip-Slot Antenna System for 5G Mid-Band Frequencies
    B. M. S. Sreenivasa Rao, B. Rajasekar
    Lecture Notes on Data Engineering and Communications Technologies, 2022
  • Coplanar wave guide fed circular fractal antenna using wireless applications
    B. Rajasekar, G. Sashidhar Reddy, G. Naveen, M. Sugadev
    World Review of Science Technology and Sustainable Development, 2022
  • A Compact Microstrip Bandpass Filter for Ultra-Wide Band Harmonic Suppression
    M Sugadev, Chandu Pavan, B. Rajasekar, Malladi Kaushik
    2022 International Conference on Computer Communication and Informatics Iccci 2022, 2022
  • A Feasible Multimodal Photoacoustic Imaging Approach for Evaluating the Clinical Symptoms of Inflammatory Arthritis
    B. Rajasekar, P. Nirmala, P. Bhuvaneswari, R. Radhika, S. Asha, K. R. Kavitha, Semagn Shifere Belay
    Biomed Research International, 2022
  • A secured tor local network for nuclear power plant industry
    C Vinothkumar, B Rajasekar, Balasankar Karavadi, J Premalatha
    Journal of Physics Conference Series, 2021
  • Different interaction analysis of receptors and ligands in suppressing diabetics
    Balasankar Karavadi, Premalatha J, Vinothkumar C, Rajasekar B
    International Journal of Current Research and Review, 2021
  • Role of IOT in Healthcare using Smart Textiles
    S. Karthikeyan, T. Sankar, M. Vijayakarthick, T Ravi, B. Rajasekar
    Icpects 2020 IEEE 2nd International Conference on Power Energy Control and Transmission Systems Proceedings, 2020
  • Image Processing Technique for Automatic Detection of Plant Diseases and Alerting System in Agricultural Farms
    Pradeep Kumar Mugithe, Rohit Varma Mudunuri, B Rajasekar, S Karthikeyan
    Proceedings of the 2020 IEEE International Conference on Communication and Signal Processing Iccsp 2020, 2020
  • A novel convolutional autoencoders based multilevel denoising framework for medical image data
    R. Kumar
    Journal of Critical Reviews, 2020
  • Potential and electrostatic energy studies of strain D39 in Streptococcus pneumonia
    Balasankar Karavadi, S S K Maha Lakshmi, B Rajasekar
    Research Journal of Pharmacy and Technology, 2019
  • Improvement of antipodal vivaldi antenna performance for wireless application
    , B.M.S. Sreenivasa Rao*, Dr.B. Rajasekar, and
    International Journal of Innovative Technology and Exploring Engineering, 2019
  • Brain tumour segmentation using CNN and WT
    B. Rajasekar
    Research Journal of Pharmacy and Technology, 2019
  • Computationally simpler and fast convergence algorithm for neural network based Ldpc encoder/ decoder
    International Journal of Scientific and Technology Research, 2019
  • Insilico analysis of docking studies CGSP strain of streptococcus pneumoniae
    International Journal of Scientific and Technology Research, 2019
  • Comparative analysis on supervised machine learning models for future wireless communication networks
    International Journal of Innovative Technology and Exploring Engineering, 2019
  • Front design and implementation of high speed front design and implementation of high speed hybrid dual d-fifo -ff (Flip ff (flip-flop) synchronizer flop) using verilog
    International Journal of Engineering and Advanced Technology, 2019
  • Low power 4×4 bit multiplier design using DADDA, WALLACE algorithm and gate diffusion input technology
    B. Rajasekar, K. Ashokkumar
    Journal of Computational and Theoretical Nanoscience, 2019
  • Low power CMOS design technique for power switches gating
    Research Journal of Pharmaceutical Biological and Chemical Sciences, 2016
  • Content based image retrieval using multi-view alignment hashing
    Research Journal of Pharmaceutical Biological and Chemical Sciences, 2016
  • FPGA implementation of ASK, BPSK and QPSK modulator using hardware co-simulation
    Research Journal of Pharmaceutical Biological and Chemical Sciences, 2016
  • Based on artificial neural network reconstructing fast X-Ray and CT images
    Research Journal of Pharmaceutical Biological and Chemical Sciences, 2016
  • Data logging of boiler temperature using Real time operating system
    Arpn Journal of Engineering and Applied Sciences, 2016
  • A survey on data acquisition for boiler temperature using RTOS
    Research Journal of Pharmaceutical Biological and Chemical Sciences, 2016
  • Feasibility of log-domain technique for high performance LDPC decoding concatenated with STBC
    Arpn Journal of Engineering and Applied Sciences, 2015
  • Design of enhanced multi-bit threshold bit flipping algorithm for low complex LDPC decoders
    Arpn Journal of Engineering and Applied Sciences, 2015
  • Performance analysis of an efficient D flip-flop based linear feedback shift register using CMOS technology
    Research Journal of Pharmaceutical Biological and Chemical Sciences, 2015
  • Modified greedy permutation algorithm for low complexity encoding in LDPC codes
    B Rajasekar, E Logashanmugam
    2014 International Conference on Control Instrumentation Communication and Computational Technologies Iccicct 2014, 2014
  • Performance evaluation of column-scaled LDPC codes under fading channel conditions
    B. Rajasekar, E. Logashanmugam
    International Conference on Embedded Systems ICES 2014, 2014
  • Euclidean geometry LDPC codes for error correction in memory devices
    International Journal of Applied Engineering Research, 2014
  • Design and development of an improved split row decoding algorithm with reduced BER
    B. Rajasekar, E. Logashanmugam
    Research Journal of Applied Sciences Engineering and Technology, 2014

RECENT SCHOLAR PUBLICATIONS

  • Concentric Square Slotted Four-Port MIMO Antenna Using EBG Decoupling Structure for 5G Applications
    BMS Sreenivasa Rao, B Rajasekar, N Prasad, BTP Madhav, ...
    Millimeter Wave and Terahertz Devices for 5G and 6G systems: Modern Design … , 2025
    2025
    Citations: 1
  • AI-Powered Classification of Bone Marrow Cancer: A Deep Learning Approach for Leukemia and Myeloma Diagnosis
    P Sravanthi, S Jahirunnisa, A Naik, KNV Khasim, B Rajasekar
    2025 6th International Conference on Data Intelligence and Cognitive … , 2025
    2025
  • Malware Classification Using Artificial Neural Network
    RK Charan, CC Nayak, KNV Khasim, A Kodipalli, B Rajasekar
    2025 International Conference on Computing Technologies (ICOCT), 1-6 , 2025
    2025
  • Machine Learning in Oncology: SVM-Based Classification of Lung, Breast and Liver Cancer from MRI Scans
    R Surendran, SR Navaneethakrishnan, B Rajasekar, KS Balamurugan, ...
    2024 IEEE 9th International Conference on Engineering Technologies and … , 2024
    2024
    Citations: 6
  • Exoskeleton Pysiotherapy and Assistive Robotic Arm
    PS Dadi, B Rajasekar, R Surendran
    2024 2nd International Conference on Sustainable Computing and Smart Systems … , 2024
    2024
    Citations: 3
  • Design of Four Element Multiband MIMO Antenna for 5G Devices
    V Shivani, KNV Khasim, PPSN Murthy, B Rajasekar, SNV Sujithbabu
    2024 5th International Conference on Image Processing and Capsule Networks … , 2024
    2024
    Citations: 1
  • Empowering Independence: Raspberry Pi OCR for Visually Impaired User
    RS Sree, K Vikas, GSB Datta, KNV Khasim, B Rajasekar
    2024 3rd International Conference on Applied Artificial Intelligence and … , 2024
    2024
  • An intelligent weather prediction model using optimized 1D CNN with attention GRU
    S Hemamalini, KG Rani, B Rajasekar, SM Sendil
    GLOBAL NEST JOURNAL 26 (2) , 2024
    2024
    Citations: 1
  • Falcon Optimization Algorithm-Based Energy Efficient Communication Protocol for Cluster-Based Vehicular Networks.
    Y Alotaibi, B Rajasekar, R Jayalakshmi, S Rajendran
    Computers, Materials & Continua 78 (3) , 2024
    2024
    Citations: 21
  • A Modified study on Genetic Algorithm in sensing orientations among the multi-directional Wireless Sensor Networks
    B Rajasekar, RAG Soundari, SM Basha, R Dhanalakshmi, V CB
    2023 International Conference on Innovative Computing, Intelligent … , 2023
    2023
  • An efficient allocation of resources in wireless communications iot network for numerous users
    SM Basha, R Dhanalakshmi, AG Soundari, V CB, B Rajasekar
    2023 International Conference on Innovative Computing, Intelligent … , 2023
    2023
    Citations: 1
  • A success of bulk queueing service of expected waiting time with regular service, repair, idle and single server vacation in real-life data analysis
    GTS Devi, KG Rani, B Rajasekar, PJS Kumar, R Surendran
    IET Conference Proceedings CP859 2023 (44), 562-565 , 2023
    2023
  • Design of phase measurement system using hybrid dual D-FIFO-FF synchronizer and PWM based duty cycle computation
    SKGK Pedapudi, B Rajasekar
    Measurement: Sensors 26, 100708 , 2023
    2023
    Citations: 5
  • Identification of Fatigue Drivers Based on Multiple Convolutional Neural Networks in Accelerometry Data
    CB Venkatramanan, B Rajasekar, SM Basha, AG Soundari, ...
    2023 International Conference on Intelligent and Innovative Technologies in … , 2023
    2023
  • Expression of Concern for: Identification of Fatigue Drivers Based on Multiple Convolutional Neural Networks in Accelerometry Data
    CB Venkatramanan, B Rajasekar, SM Basha, AG Soundari, ...
    2023 International Conference on Intelligent and Innovative Technologies in … , 2023
    2023
  • ANND: Identification and Prediction of Tooth Decay based on Artificial Neural Network and DenseNet Model
    AG Soundari, R Dhanalakshmi, B Rajasekar, SM Basha
    2023 International Conference on Intelligent and Innovative Technologies in … , 2023
    2023
    Citations: 2
  • Exploring the Role of Mining Wireless Framework in Identifying Human Privacy Vulnerabilities in Internet of Things Networks
    R Dhanalakshmi, CB Venkatramanan, B Rajasekar, SM Basha, ...
    2023 International Conference on Intelligent and Innovative Technologies in … , 2023
    2023
  • Miniaturized coplanar waveguide‐fed metamaterial inspired antenna for radio frequency identification applications
    R Subbaiyan, BR Rajasekar
    Microwave and Optical Technology Letters 65 (1), 328-333 , 2023
    2023
    Citations: 3
  • A Compact Microstrip Bandpass Filter for Ultra-Wide Band Harmonic Suppression
    M Sugadev, C Pavan, B Rajasekar, M Kaushik
    2022 International Conference on Computer Communication and Informatics … , 2022
    2022
    Citations: 2
  • Mid-Band Frequencies
    BMSS Rao, B Rajasekar
    Proceedings of International Conference on Wireless Communication: ICWiCom … , 2022
    2022

MOST CITED SCHOLAR PUBLICATIONS

  • Image processing technique for automatic detection of plant diseases and alerting system in agricultural farms
    PK Mugithe, RV Mudunuri, B Rajasekar, S Karthikeyan
    2020 International Conference on Communication and Signal Processing (ICCSP … , 2020
    2020
    Citations: 37
  • An efficient resource allocation strategies in cloud computing
    B Rajasekar, SK Manigandan
    International Journal of Innovative Research in Computer and Communication … , 2015
    2015
    Citations: 22
  • Falcon Optimization Algorithm-Based Energy Efficient Communication Protocol for Cluster-Based Vehicular Networks.
    Y Alotaibi, B Rajasekar, R Jayalakshmi, S Rajendran
    Computers, Materials & Continua 78 (3) , 2024
    2024
    Citations: 21
  • Machine Learning in Oncology: SVM-Based Classification of Lung, Breast and Liver Cancer from MRI Scans
    R Surendran, SR Navaneethakrishnan, B Rajasekar, KS Balamurugan, ...
    2024 IEEE 9th International Conference on Engineering Technologies and … , 2024
    2024
    Citations: 6
  • [Retracted] A Feasible Multimodal Photoacoustic Imaging Approach for Evaluating the Clinical Symptoms of Inflammatory Arthritis
    B Rajasekar, P Nirmala, P Bhuvaneswari, R Radhika, S Asha, KR Kavitha, ...
    BioMed Research International 2022 (1), 7358575 , 2022
    2022
    Citations: 6
  • Design of phase measurement system using hybrid dual D-FIFO-FF synchronizer and PWM based duty cycle computation
    SKGK Pedapudi, B Rajasekar
    Measurement: Sensors 26, 100708 , 2023
    2023
    Citations: 5
  • Low power 4× 4 bit multiplier design using DADDA, WALLACE algorithm and gate diffusion input technology
    KVK Reddy, K Abhinav, B Rajasekar, K Ashokkumar
    Journal of Computational and Theoretical Nanoscience 16 (8), 3359-3366 , 2019
    2019
    Citations: 5
  • Brain tumour segmentation using CNN and WT
    B Rajasekar
    Research Journal of Pharmacy and Technology 12 (10), 4613-4617 , 2019
    2019
    Citations: 4
  • Exoskeleton Pysiotherapy and Assistive Robotic Arm
    PS Dadi, B Rajasekar, R Surendran
    2024 2nd International Conference on Sustainable Computing and Smart Systems … , 2024
    2024
    Citations: 3
  • Miniaturized coplanar waveguide‐fed metamaterial inspired antenna for radio frequency identification applications
    R Subbaiyan, BR Rajasekar
    Microwave and Optical Technology Letters 65 (1), 328-333 , 2023
    2023
    Citations: 3
  • Automatic number plate recognition using convolution neural network
    B Rajasekar, BMSK Roshan, BC Naidu, VV Kumar
    Sixth International Conference on Intelligent Computing and Applications … , 2021
    2021
    Citations: 3
  • Modified greedy permutation algorithm for low complexity encoding in LDPC codes
    B Rajasekar, E Logashanmugam
    2014 International Conference on Control, Instrumentation, Communication and … , 2014
    2014
    Citations: 3
  • ANND: Identification and Prediction of Tooth Decay based on Artificial Neural Network and DenseNet Model
    AG Soundari, R Dhanalakshmi, B Rajasekar, SM Basha
    2023 International Conference on Intelligent and Innovative Technologies in … , 2023
    2023
    Citations: 2
  • A Compact Microstrip Bandpass Filter for Ultra-Wide Band Harmonic Suppression
    M Sugadev, C Pavan, B Rajasekar, M Kaushik
    2022 International Conference on Computer Communication and Informatics … , 2022
    2022
    Citations: 2
  • Coplanar wave guide fed circular fractal antenna using wireless applications
    B Rajasekar, GS Reddy, G Naveen, M Sugadev
    World Review of Science, Technology and Sustainable Development 18 (1), 1-6 , 2022
    2022
    Citations: 2
  • Role of IOT in Healthcare Using Smart Textiles
    S Karthikeyan, T Sankar, M Vijayakarthick, T Ravi, B Rajasekar
    2020 International Conference on Power, Energy, Control and Transmission … , 2020
    2020
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